WO2018144302A1 - Moteur de traitement de données de chaîne de blocs - Google Patents

Moteur de traitement de données de chaîne de blocs Download PDF

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Publication number
WO2018144302A1
WO2018144302A1 PCT/US2018/015145 US2018015145W WO2018144302A1 WO 2018144302 A1 WO2018144302 A1 WO 2018144302A1 US 2018015145 W US2018015145 W US 2018015145W WO 2018144302 A1 WO2018144302 A1 WO 2018144302A1
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blockchain
bdp
engine
database
transaction
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PCT/US2018/015145
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English (en)
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Thomas Jay RUSH
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Rush Thomas Jay
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Priority to US15/769,086 priority Critical patent/US20190079998A1/en
Publication of WO2018144302A1 publication Critical patent/WO2018144302A1/fr

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Classifications

    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/30Information retrieval; Database structures therefor; File system structures therefor of unstructured textual data
    • G06F16/33Querying
    • G06F16/335Filtering based on additional data, e.g. user or group profiles
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L9/00Cryptographic mechanisms or cryptographic arrangements for secret or secure communications; Network security protocols
    • H04L9/50Cryptographic mechanisms or cryptographic arrangements for secret or secure communications; Network security protocols using hash chains, e.g. blockchains or hash trees
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/10File systems; File servers
    • G06F16/18File system types
    • G06F16/1805Append-only file systems, e.g. using logs or journals to store data
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/30Information retrieval; Database structures therefor; File system structures therefor of unstructured textual data
    • G06F16/33Querying
    • G06F16/3331Query processing
    • G06F16/334Query execution
    • G06F16/3346Query execution using probabilistic model
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06FELECTRIC DIGITAL DATA PROCESSING
    • G06F16/00Information retrieval; Database structures therefor; File system structures therefor
    • G06F16/90Details of database functions independent of the retrieved data types
    • G06F16/901Indexing; Data structures therefor; Storage structures
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q20/00Payment architectures, schemes or protocols
    • G06Q20/04Payment circuits
    • G06Q20/06Private payment circuits, e.g. involving electronic currency used among participants of a common payment scheme
    • G06Q20/065Private payment circuits, e.g. involving electronic currency used among participants of a common payment scheme using e-cash
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q20/00Payment architectures, schemes or protocols
    • G06Q20/30Payment architectures, schemes or protocols characterised by the use of specific devices or networks
    • G06Q20/36Payment architectures, schemes or protocols characterised by the use of specific devices or networks using electronic wallets or electronic money safes
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L9/00Cryptographic mechanisms or cryptographic arrangements for secret or secure communications; Network security protocols
    • H04L9/06Cryptographic mechanisms or cryptographic arrangements for secret or secure communications; Network security protocols the encryption apparatus using shift registers or memories for block-wise or stream coding, e.g. DES systems or RC4; Hash functions; Pseudorandom sequence generators
    • H04L9/0643Hash functions, e.g. MD5, SHA, HMAC or f9 MAC
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L9/00Cryptographic mechanisms or cryptographic arrangements for secret or secure communications; Network security protocols
    • H04L9/32Cryptographic mechanisms or cryptographic arrangements for secret or secure communications; Network security protocols including means for verifying the identity or authority of a user of the system or for message authentication, e.g. authorization, entity authentication, data integrity or data verification, non-repudiation, key authentication or verification of credentials
    • H04L9/3236Cryptographic mechanisms or cryptographic arrangements for secret or secure communications; Network security protocols including means for verifying the identity or authority of a user of the system or for message authentication, e.g. authorization, entity authentication, data integrity or data verification, non-repudiation, key authentication or verification of credentials using cryptographic hash functions
    • GPHYSICS
    • G06COMPUTING; CALCULATING OR COUNTING
    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
    • G06Q2220/00Business processing using cryptography
    • HELECTRICITY
    • H04ELECTRIC COMMUNICATION TECHNIQUE
    • H04LTRANSMISSION OF DIGITAL INFORMATION, e.g. TELEGRAPHIC COMMUNICATION
    • H04L2209/00Additional information or applications relating to cryptographic mechanisms or cryptographic arrangements for secret or secure communication H04L9/00
    • H04L2209/56Financial cryptography, e.g. electronic payment or e-cash

Definitions

  • the present invention relates generally to blockchain-based systems, and more particularly, but not exclusively, to an engine for processing data from an arbitrarily large blockchain in a decentralized, compute/memory-limited manner.
  • blockchains provide a distributed/decentralized, consensus-driven, secure/immutable method for maintaining a ledger of transactions.
  • ledger of transactions means an accounting ledger, each transaction in the ledger consisting of a spender (from), a recipient (to), a timestamp, and a value.
  • distributed in this context means that each participant's computer maintains his/her own identical copy of this ledger.
  • Consensus-driven refers to the fact that a majority of participants, prior to writing to the ledger, must agree on what will be written.
  • immutable refers to the fact that, once a transaction is written, it is all but impossible for a single participant (or group of participants that is smaller than a simple majority) to alter the ledger. Many expect the world to change in significant ways with the existence of a single unalterable, transparent, globally accessible, and validated version of the history of the world's financial and computing transactions.
  • Blockchains store lists of transactions. These transactions are included in a block in a time-ordered basis. The accounts that initiate or receive transactions are stored on the blockchain, but not in an easily-accessible manner. This implies that building lists of transactions, given a particular account or a collection of accounts, is time consuming and difficult. This difficulty is exacerbated by the fact that the receiving account of certain transactions called an "internal transaction" may be a "smart contract,” which may further initiate transactions to other accounts or other smart contracts, in a nested manner.
  • the central Ethereum blockchain contains some twenty-one million unique accounts (aka addresses) (out of a possible 2 160 ) and nearly five million blocks (see https ://eth erscan Jo/) .
  • addresses aka addresses
  • blocks see https ://eth erscan Jo/
  • the size of the Ethereum blockchain increases by roughly four blocks every minute.
  • nodes with Terabytes of memory and Petaflops of computing power that can work directly with such a large and complex data structure
  • a blockchain also contains much more information than a typical user may be interested in. Most people are interested in their own account data or those of their companies, rather than blocks, hashes, and mining data. This limited interest extends to both participants in, and purveyors of, smart contracts in Ethereum systems, as well as regular users of any of the related alt-coin currencies with their own accounts.
  • a blockchain node is a computer running a piece of networking software that runs identically and
  • Blockchain nodes continually broadcast transactions to other nodes on the blockchain network and listen for transactions from other nodes. Competing with each other to be the first to identify a suitably difficult-to-find stochastically-generated solution to a cryptographic puzzle, the winning node constructs a block (using a recent collection of transactions) and, once consensus is reached with a majority of the other nodes, the winning node is rewarded with a newly created "coin” or "coins" of then-current value of the digital currency of the blockchain being processed.
  • the winner of the block additionally receives the accumulated transaction costs of the approved transactions. These costs are called "gas" in the Ethereum context.
  • each node provides an interface to its own copy of the blockchain data. This interface is provided either through RPC (remote procedure calls) or IPC (inter-process communication), each of which allows other software components to retrieve data from the blockchain.
  • RPC remote procedure calls
  • IPC inter-process communication
  • the node's communication interfaces provide functionality for retrieving blocks, transactions, receipts, traces, account balances, and other highly-specific data such as mining information, block and transaction hashes, and, importantly, the ability to create, sign, and initiate transactions. These latter functionalities might not be of interest to end users who are primarily concerned with retrieving only blocks, transactions, receipts, traces, and logs.
  • FIG. 1 is a block diagram of a blockchain-processing system comprising a blockchain data-processing (BDP) engine configured to process data in an Ethereum blockchain, according to one embodiment of the present invention
  • FIG. 2 is a flow diagram of the processing performed by the BDP engine of FIG. 1 to generate a report for a specified account of interest (AOI) in response to a received report request;
  • FIG. 3 is a flow diagram of the processing performed by the BDP engine of FIG. 1 to update the transaction-location database of FIG. 1 when a new AOI is received;
  • FIG. 4 is a flow diagram of the processing performed by the BDP engine of FIG. 1 to update the accounts database of FIG. 1 for a block retrieved from the blockchain of FIG. 1 .
  • FIG. 1 is a block diagram of a blockchain data-processing (BDP) system 100 comprising a BDP engine 120 configured to process data stored in an Ethereum blockchain 1 10, according to one embodiment of the present invention.
  • the BDP engine 120 provides a programming interface to blockchain data that enables quick, iterative, experimental exploration of that data.
  • the BDP engine 120 can be designed to support many different functions including, but not limited to, smart contract monitoring, usage investigations, generation of databases for use in user-interface websites, and report generation.
  • the Ethereum blockchain 1 10 is a large data structure composed of many blocks that are cryptographically related/linked/chained to each other.
  • the Ethereum blockchain 1 10 is described in Dr. Gavin Wood, "Ethereum: A Secure Decentralised Generalised Transaction Ledger,” EIP-150 REVISION (759dccd - 2017-08-07)
  • the Ethereum blockchain 1 10 is stored in a decentralized Ethereum network (not shown in FIG. 1 ) that includes multiple nodes, each of which maintains an identical copy of the blockchain 1 10.
  • the blockchain 1 10 is generated by starting with a common seed/genesis block and adding other consensus-validated blocks to the chain.
  • Each block in the Ethereum blockchain 1 10 is sequentially assigned a unique, incremented 8-byte block identification (ID) number, and each account in the Ethereum blockchain 1 10 is assigned a unique 20-byte account ID number.
  • ID 8-byte block identification
  • Each block in the blockchain 1 10 contains data associated with one or more transactions, where each transaction may involve one or more traces, and each trace may involve one or more accounts.
  • a node in the Ethereum network can generate traces on demand for the BDP engine 120.
  • the BDP engine 120 can process the block to identify each transaction and, for each transaction, the BDP engine 120 can analyze the one or more traces to determine whether the account is involved in that transaction.
  • the BDP engine 120 of FIG. 1 which can be, but does not have to be, implemented at one of the nodes of the Ethereum network, generates and maintains a number of different databases that provide faster and easier access to blockchain data than would otherwise be available by directly accessing the blockchain 1 10 without the benefit of those databases. To support its different functions, the BDP engine 120 maintains the following databases:
  • AOI database 130 which stores a list of the account ID numbers for the one or more accounts of interest (AOIs) 122 currently supported by the BDP engine 120;
  • Reports database 140 which stores reports 128 previously generated by the BDP engine 120 for the AOIs 122
  • Transaction-location database 150 which stores, for each AOI 122 currently supported by the BDP engine 120, a transaction-location list containing the location in the blockchain 1 10 of each transaction for that AOI;
  • Accounts database 160 which stores bloom filters that very efficiently represent those accounts having data stored in different portions of the blockchain 1 10;
  • Blocks database 170 which stores optimized, binary versions 1 16 of one or more (and possibly all) of the blocks 1 14 in the blockchain 1 10.
  • the location of each transaction is represented in the transaction-location database 150 by a numeric tuple consisting of the following parameters:
  • each tuple in the transaction-location database 150 includes only the blockNumber and the transactionlndex. In that case, the BDP engine 120 would need to analyze the traces for each transaction in order to identify the tracelD for each transaction of interest.
  • the BDP engine 120 processes the blocks 1 14 in the blockchain 1 10 in order starting from the very first block. As described in further detail below, at every block 1 14, the BDP engine 120 updates (i) the accounts database 160 for any accounts having one or more transactions in the block, (ii) the transaction-location database 150 for each transaction in the block associated with any of the AOIs 122, and (iii) possibly the blocks database 170.
  • the BDP engine 120 stores an optimized, binary version 1 16 of each block 1 14 in the blocks database 170. In that case, if the BDP engine 120 needs data that is included in the optimized data in the blocks database 170, then the BDP engine 120 can retrieve that data from the blocks database 170 without having to go back to the blockchain 1 10. As such, the BDP engine 120 may never need to process any block 1 14 more than once.
  • the BDP engine 120 stores the optimized, binary version 1 16 in the blocks database 170. Otherwise, the BDP engine 120 discards the block 1 14 after updating the accounts database 160 and the transaction-location database 150 without updating the blocks database 170. In that case, if the BDP engine 120 needs data from a block that is not represented in the blocks database 170, then the BDP engine 120 will have to retrieve that block 1 14 from the blockchain 1 10.
  • the decision about whether or not to store an optimized, binary version 1 16 of a blockchain block 1 14 in the blocks database 170 involves a tradeoff between storage space and data access speed. Storing data in the blocks database 170 increases the access speed for that data, but at the cost of additional storage space. Minimizing storage space helps to enable full decentralization by limiting the hardware requirements involved in implementing each BDP engine 120. In any case, if the BDP engine 120 needs data that is not otherwise included in the blocks database 170, then the BDP engine 120 will have to retrieve that data from the blockchain 1 10.
  • the BDP engine 120 needs to generate a transaction- location list for that new AOI 122. To do that, the BDP engine 120 needs access to all of the transactions for that new AOI 122 in the blockchain 1 10. If any of those transactions are represented in the optimized, binary blocks 1 16 currently stored in the blocks database 170, then the BDP engine 120 retrieves those transactions from the blocks database 170. If any of those transactions are not represented in the blocks database 170, then the BDP engine 120 has to retrieve the corresponding blocks 1 14 from the blockchain 1 10.
  • the BDP engine 120 will then store an optimized, binary version 1 16 of each such retrieved block 1 14 in the blocks database 170.
  • the new BDP engine 120 can get copies of existing databases from one or more other instances of the BDP engine 120. In that case, the new BDP engine 120 will be able to start its sequential block processing with the periodically added new blocks 1 12.
  • Such a network of BDP engines 120 would technically not be fully decentralized since each BDP engine 120 would not be independent of all other BDP engines in the network.
  • each BDP engine 120 would independently generate all of its databases from scratch. Note that, although the accounts database 160 and (possibly) the blocks database 170 from another BDP engine 120 will be identical to those databases for the new BDP engine 120, the contents of the transaction-location database 150 will be the same only for AOIs 122 that the two BDP engines 120 have in common, if any. For any AOI 122 not represented in a copied transaction database, the new BDP engine 120 will have to generate a corresponding transaction-location list from scratch.
  • the BDP engine 120 processes each block 1 14 in the blockchain 1 10 at least once and possibly only once. During the first processing of a block 1 14, the BDP engine 120 notes the account address of the miner who won the block's reward. Each block 1 12 has a single winning miner. In addition, the BDP engine 120 updates the transaction-location database 150, the accounts database 160, and the blocks database 170, as appropriate. In particular, for each AOI 122 identified in the AOI database 130, the BDP engine 120 identifies any transactions for that AOI 122 contained in the block 1 14 and adds the locations for those transactions, if any, to the transaction-location list for that AOI 122 in the transaction-location database 150.
  • the BDP engine 120 updates one or more bloom filters in the accounts database 160 to represent those accounts having data in the block 1 14. This processing is described in further detail below with reference to FIG. 4. Note that the BDP engine 120 includes the account of each block's winning miner in each corresponding bloom filter. In addition, if that account is an AOI 122, then the BDP engine 120 includes an address for the block in the transaction-location list for that AOI 122 in the transaction-location database 150. In addition, the BDP engine 120 may also convert the block 1 14 into an optimized, binary version 1 16 for storage in the blocks database 170. Note that, if the BDP engine 120 ever processes a block 1 14 for a second (or subsequent) time, the BDP engine 120 will not have to update the accounts database 160.
  • the BDP engine 120 for each transaction in the new block, the BDP engine 120 generates all of the traces for that transaction, uses those traces to (i) add tuples to the transaction-location lists in the transaction-location database 150 for any AOIs 122 that are involved in that transaction and (ii) update one or more bloom filters in the accounts database 160 for all accounts that are involved in that transaction, and then discards those traces. In this way, the BDP engine 120 can update both the transaction-location database 150 and the accounts database 160 without having to generate the traces for each transaction more than once.
  • the BDP engine 120 When the account ID number for a new account of interest 122 is received, the BDP engine 120 adds the account ID number for the new AOI to the AOI database 130 and accesses the accounts database 160 to identify the blocks in the blockchain 1 10 having data for that AOI. These identified blocks are referred to as blocks of interest (BOIs). The BDP engine 120 retrieves and processes each BOI either from the blocks database 170 or, if the BOI is not represented in the blocks database 170, from the blockchain 1 10 itself to generate a new tuple-based transaction-location list for the new AOI 122 for inclusion in the transaction- location database 150.
  • BOIs blocks of interest
  • the BDP engine 1 10 retrieves a BOI from the blockchain 1 10, then the BDP engine 1 10 can store an optimized version of the BOI to the blocks database 170. This processing is described in further detail below with reference to FIG. 3. Because of the existence of the accounts database 160 and the blocks database 170, the BDP engine 120 is able to update the transaction-location database 150 significantly faster than if the BDP engine 120 were to have to search through the entire blockchain 1 10 for the new AOI 122 without the benefit of those databases. Moreover, as described further below, the accounts database 160 represents the accounts in the blockchain 1 10 in a memory-efficient manner that keeps the size of the accounts database 160 relatively small, despite the large and expanding size of the blockchain.
  • the BDP engine 120 is capable of generating reports 128 for one or more accounts of interest (AOIs) 122, which represent a subset of all of the different accounts having data in the Ethereum blockchain 1 10.
  • the AOIs 122 may represent the accounts specific to one or more individuals and/or one or more businesses that have purchased the BDP engine 120 or BDP engine services.
  • the reports 128 may include account statements covering transactions covering specific periods (e.g., year-to-date, last year, last month, or last week, or custom start and end) or filtered to include certain subsets of transaction types (e.g., deposits, withdrawals, gas) or summaries (e.g., balance by account, balance by transaction type).
  • the BDP engine 120 accesses the transaction-location list for that AOI in the transaction-location database 150 to retrieve data for each listed transaction either from the blocks database 170 or, if the block containing the listed transaction is not represented in the blocks database 170, from the blockchain 1 10 itself and then generates the requested report 128 based on that retrieved data. If the data is to be retrieved from the blockchain 1 10 itself, then the BDP engine 120 uses the block ID number 126 from the transaction tuple to retrieve the corresponding block 1 14 from the blockchain 1 10. This processing is described in further detail below with reference to FIG. 2. Because of the existence of the transaction-location database 150 and the blocks database 170, the BDP engine 120 is able to generate reports 128 significantly faster than if the BDP engine were to search through the entire blockchain 1 10 for transactions without the benefit of those databases.
  • FIG. 2 is a flow diagram of the processing 200 performed by the BDP engine 120 to generate a report 128 for a specified AOI 122 in response to a received report request 124.
  • the processing 200 begins in step 202 with the BDP engine 120 receiving the report request 124 for the specific AOI 122.
  • the BDP engine 120 uses the account ID number for the AOI 122 to access the corresponding tuple-based transaction-location list that is stored in the transaction-location database 150.
  • step 206 for the locations identified in the transaction-location list, the BDP engine 120 uses the corresponding block ID numbers to retrieve the blocks of interest either from the blocks database 170 or, if a BOI is not represented in the blocks database 170, from the blockchain 1 10 itself.
  • step 208 the BDP engine 120 uses the tuples enumerated in the transaction-location list to access and extract the appropriate transaction data from the retrieved BOIs for the desired report.
  • the BDP engine 120 generates the desired report 128 using the extracted transaction data and, in step 212, the BDP engine 120 outputs and stores the report in the reports database 140. If, for example, the desired report 128 is a balance statement for the AOI 122, then the BDP engine 120 may generate a report with all the transactions, dates, and running balances for the AOI.
  • the AOI 122 may have one or more transactions in each BOI retrieved in step 206.
  • the transaction-location list for the AOI 122 will have one or more corresponding tuples for each BOI, each tuple identifying the location of a different transaction in that BOI.
  • the BDP engine 120 sequentially retrieves one BOI at a time in step 206 and processes that BOI for the one or more tuples corresponding to transactions for the AOI 122 in that BOI in step 208 prior to retrieving and processing the next BOI in subsequent executions of steps 206 and 208.
  • step 206 the BDP engine 120 retrieves multiple BOIs (and possibly all of the BOIs that are referenced by the tuples in the transaction-location list accessed in step 204), and then processes those multiple BOIs in step 208.
  • This latter implementation leaves open the possibility of steps 206 and 208 being implemented in parallel by multiple data- processing sub-engines. Note that this parallelism may create a bottleneck on the single blockchain resource and, in some cases, this bottleneck may be relieved by requesting these BOIs from multiple, independent copies of the blocks database 170 and/or from multiple, independent copies of the blockchain 1 10 in parallel.
  • IPFS interplanetary file system
  • the BDP engine 120 gathers the transaction data in step 208, the BDP engine 120 calculates a running balance for the AOI and compares that running balance to the running balances recorded in the blockchain 1 10. This processing provides a check on the operation of the BDP engine 120 and/or a check on the validity of the smart contract operations within the transactions in the blockchain 1 10.
  • the BDP engine 120 can retrieve the previous report 128 from the reports database 140 and update that report using only the recent tuples in the transaction-location list in the transaction-location database 150 for that AOI 122 without having to re-create the entire report from scratch.
  • the BDP engine 120 processes the new block 1 12 to update, as necessary, the transaction-location lists stored in the transaction-location database 150 for the AOIs 122 currently identified in the AOI database 130. This processing involves the BDP engine 120 identifying each transaction in the new block 1 12, determining whether the transaction involves one of the AOIs 122, and, if so, appending the tuple for that transaction to the end of the transaction-location list for that AOI in the transaction-location database 150.
  • the BDP engine 120 When the BDP engine 120 receives the account ID number for a new AOI 122 to support, the BDP engine 120 updates the transaction-location database 150 to add a new list of transaction locations for the new AOI.
  • FIG. 3 is a flow diagram of the processing 300 performed by the BDP engine 120 to update the transaction-location database 150 when the account ID number for a new AOI 122 is received.
  • the processing 300 begins in step 302 with the BDP engine 120 receiving and storing the account ID number for the new AOI 122 in the AOI database 130.
  • the BDP engine 120 uses the account ID number for the new AOI 122 to access the accounts database 160 to identify the block ID numbers for the blocks in the blockchain 1 10 that may contain data for the new AOI 122.
  • the BDP engine 120 uses the retrieved block ID numbers 126 to retrieve the blocks of interest either from the blocks database 170 or, if a BOI is not represented in the blocks database 170, from the blockchain 1 10 itself.
  • the BDP engine 120 processes the retrieved BOIs to identify transactions for the new AOI 122 contained in the BOIs and generate, for each transaction, a corresponding tuple to be included in the new transaction-location list for the new AOI 122 in the transaction-location database 150.
  • one or more blocks in the blockchain 1 10 will contain data for the new AOI 122.
  • the BDP engine 120 sequentially retrieves one BOI at a time in step 306 and processes that BOI in step 308 prior to retrieving and processing the next BOI in subsequent executions of steps 306 and 308.
  • the BDP engine 120 first retrieves multiple BOIs (and possibly all of the BOIs) in step 306 and then processes those multiple BOIs in step 308. This latter implementation leaves open the possibility of steps 306 and 308 being implemented in parallel by multiple data-processing sub- engines.
  • the BOIs may be drawn from multiple, independent copies of the blocks database 170 and/or from multiple, independent copies of the block chain 1 10, as discussed previously, to minimize a bottleneck on a single blocks database and/or a single blockchain. Maintenance of the Accounts Database
  • the accounts database 160 could contain, for each account having data in the blockchain 1 10, a list explicitly identifying, by block ID number, each block in the blockchain 1 10 containing data for that account.
  • the size of such a database would be on the same order of magnitude as the size of the blockchain 1 10 itself.
  • the accounts database 160 uses a space- efficient probabilistic data structure such as a bloom filter to represent the accounts in the blockchain 1 10.
  • Bloom filters are described in Burton H. Bloom, "Space/Time Trade-offs in Hash Coding with Allowable Errors," Communications of the ACM, 13 (7): 422-426 (1970), the teachings of which are incorporated herein by reference in their entirety.
  • the bloom filters in the accounts database 160 are based on the Sha256 hash function described in the Yellow Paper.
  • the hash function when applied to a specified 20-byte account ID number, the hash function generates a 2048-bit hash output value in which one, two, or three bits are set to 1 , with the remaining bits all set to 0. The one, two, or three specific bits that are set to 1 are likely to be, but do not have to be, different for two different account ID numbers.
  • a bloom filter for the accounts database 160 is generated by applying the hash function to a specified set of different account ID numbers and bitwise logically ORing the corresponding 2048-bit hash outputs together. The resulting 2048-bit bloom filter will have some of its bits set to 1 and the rest set to 0. Typically, larger sets of account ID numbers result in more bits of the bloom filter being set to 1 .
  • a particular account ID number might be a member of the set of account ID numbers used to generate a particular bloom filter
  • the same hash function is applied to the particular account ID number to generate a corresponding 2048-bit hash output having one, two, or three bits set to 1 .
  • the hash output is then bitwise ANDed with the bloom filter that represents the set of account ID numbers, and, if the result is non-zero, then the particular account ID number may be a member of the set of accounts ID numbers used to generate the bloom filter. If, however, the result is zero, then the account ID number is definitely not a member of the set of account ID numbers used to generate the bloom filter.
  • the non-zero result of the bitwise ANDing could be a false positive indicating that the particular account ID number is a member of the set when, in fact, it is not.
  • the bloom filter can generate true positive results and false positive results.
  • the bloom filter cannot generate false negative results.
  • the bloom filter will never wrongly indicate that a particular account ID number is not in the set when in fact it is.
  • the accounts database 160 could include one bloom filter for each block in the blockchain 1 10, where that single-block bloom filter could be used to provide an indication of whether or not any given account has data in that corresponding block.
  • single-block bloom filters for blocks containing data for relatively few accounts would be underutilized resulting in wasted bloom filter capacity.
  • single-block bloom filters for blocks containing data for relatively many accounts could result in a high frequency of false positive outputs, which would result in inefficient processing 300 of FIG. 3 by the BDP engine 120 in generating the transaction-location list for a new AOI 122.
  • the BDP engine 120 instead of generating non-adaptive, single-block bloom filters, in a preferred implementation, the BDP engine 120 generates adaptive bloom filters for the accounts database 160, where each adaptive bloom filter has approximately the same target fullness level, where fullness is based on the number of bits in the bloom filter that are set to 1 .
  • the target fullness level can be selected to correspond to a maximum acceptable rate of false positive bloom filter results, which may be dependent on the amount of available resources on the target machine used to implement the BDP engine 120.
  • the BDP engine 120 generates the accounts database 160 by initializing a first bloom filter to zero at the beginning of the first block in the blockchain 1 10. When the first bloom filter reaches the specified target fullness level, the BDP engine 120 stores the first bloom filter as the first completed bloom filter in the accounts database 160.
  • the end of the first bloom filter may occur somewhere in the first block in the blockchain 1 10 or somewhere in a subsequent block in the blockchain 1 10. Either way, the beginning of the second bloom filter will correspond to the next transaction after the end of the first bloom filter.
  • a given bloom filter will begin with the next account encountered in the blockchain 1 10 after the last account represented in the previous bloom filter and will end when the target fullness level is reached in that given bloom filter.
  • the current transaction trace or even the current transaction is completed before completing the current bloom filter even if that means exceeding the target fullness level.
  • the BDP engine 120 stores a completed bloom filter into the accounts database 160, that bloom filter is never modified. After storing a completed bloom filter, the BDP engine 120 immediately starts to generate the next bloom filter from where the just-completed bloom filter ended.
  • the accounts database 160 contains a number of different bloom filters, each corresponding to a different, contiguous portion of the blockchain 1 10, where each bloom filter spans from a particular filter-start location in a particular block in the blockchain 1 10 to a particular filter-stop location in a particular block in the blockchain 1 10, where the start and stop locations may be in two different blocks or within the same block in the blockchain 1 10.
  • each 2048-bit bloom filter gets stored in the accounts database 160 along with at least the filter-stop location for that bloom filter.
  • the filter-start location for any bloom filter can be determined from the filter-stop location for the previous bloom filter in the accounts database 160.
  • the bloom filter When a particular account ID number is applied to a particular bloom filter in the accounts database 160, the bloom filter generates either a positive result or a negative result. Due to the absence of false negatives for bloom filters, a negative result indicates that the portion of the blockchain 1 10 represented by that bloom filter does not contain any data for the account identified by the particular account ID number. On the other hand, due to the possibility of false positives for bloom filters, a positive result indicates that the portion of the blockchain 1 10 represented by that bloom filter might or might not contain data for the identified account.
  • step 304 of FIG. 3 involves the BDP engine 120 applying the hash function to the account ID number for the new AOI 122.
  • the BDP engine 120 compares the resulting 2048-bit hash output to the different 2048-bit bloom filters stored in the accounts database 160 to determine which portions of the blockchain 1 10 might have data for the new AOI 122.
  • the BDP engine 120 can perform each comparison by determining whether the bitwise AND of the hash output and the particular bloom filter is non-zero. If the ANDing result is zero, then the comparison outcome is negative and the BDP engine 120 can ignore the portion of the blockchain 1 10 represented by that bloom filter.
  • step 306 the BDP engine 120 retrieves, from the blocks database 170 and/or from the blockchain 1 10, the one or more blocks corresponding to the portion of the blockchain 1 10 represented by that bloom filter.
  • step 308 the BDP engine 120 processes the one or more retrieved blocks (or at least the parts of those one or more retrieved blocks contained in the corresponding portion of the blockchain 1 10) to try to identify the locations of transactions for the new AOI 122 that are to be stored in the transaction-location database 150.
  • the BDP engine 120 To generate the accounts database 160, starting with the very first block in the blockchain 1 10, the BDP engine 120 sequentially processes each block in the blockchain 1 10 one time to generate bloom filters for the accounts database 160. Because new blocks 1 12 continue to be added to the blockchain 1 10, the BDP engine 120 updates the accounts database 160 every time a new block 1 12 is added.
  • FIG. 4 is a flow diagram of the processing 400 performed by the BDP engine 120 to update the accounts database 160 for a block 1 14 retrieved from the blockchain 1 10.
  • the processing 400 is sequentially invoked one time for each block 1 14 in the blockchain 1 10. Since the ends of the bloom filters are not guaranteed to coincide with the ends of blocks, when the BDP engine 120 finishes processing the current block 1 14, the bloom filter that the BDP engine 120 was generating (aka the current bloom filter) will typically be incomplete (i.e., below the target fullness level). Nevertheless, since an incomplete current bloom filter can represent accounts having data in one or more blocks 1 14 in the blockchain 1 10, the incomplete current bloom filter should be stored in the accounts database 160 to be available for the processing 300 of FIG.
  • the processing 400 of FIG. 4 begins in step 402 with the BDP engine 120 the BDP engine 120 receiving and storing the block 1 14 in a local cache.
  • the BDP engine 120 retrieves from the accounts database 160 the incomplete current bloom filter that existed at the end of the processing 400 of the previous block 1 14.
  • the BDP engine 120 can maintain a separate copy of the incomplete current bloom filter that is retrieved in step 404.
  • the BDP engine 120 identifies the account ID number for the next account involved in a transaction in the block 1 14. As suggested previously, the BDP engine 120 can identify accounts by parsing the block 1 14 to identify each transaction in the block and, for each transaction, the BDP engine 120 can follow the trace of the transaction (i.e., for Ethereum blocks, the trace is followed potentially through nested levels of smart contracts and other calls) and extract the identities of any accounts for the transaction.
  • the BDP engine 120 can identify accounts by parsing the block 1 14 to identify each transaction in the block and, for each transaction, the BDP engine 120 can follow the trace of the transaction (i.e., for Ethereum blocks, the trace is followed potentially through nested levels of smart contracts and other calls) and extract the identities of any accounts for the transaction.
  • the BDP engine 120 notes the 'from' address, the 'to' address, the address ('contractAddress') representing any smart contracts created as a result of the transaction, and the addresses of accounts that generated events during that invocation of the transaction. All of this data may be generated by the BDP engine 120 at the start of the processing of the current block.
  • the BDP engine 120 then further requests any traces generated by that transaction of which there may be many thousands.
  • the BDP engine 120 then processes each trace. By following each transaction trace (which may represent "calls into” or “creation of” other smart contracts, which subsequently may "call into” or “create” yet more smart contracts), every account involved in a given transaction can be recorded.
  • the BDP engine 120 notes the 'from', 'to', 'refundAddress' (in the case of a smart contract suicide), 'action.
  • the BDP engine 120 furthermore uses the traces to identify in-error transactions.
  • visiting a transaction's traces is the only way to accurately identify in-error transactions prior to the Byzantium fork.
  • the Byzantium Fork was a 2017 upgrade to the Ethereum blockchain code that (among other things) corrected the fact that the only way to determine if a transaction ended in error, was to visit every trace of that transaction.
  • the Byzantium Fork fixed this by noting the error status at the transaction receipt level as opposed to deep down in a trace. For all blocks prior to the Byzantium Fork, one still needs to look at traces to determine transaction error status. After the Byzantium fork, this is no longer necessary.
  • step 408 the BDP engine 120 applies the hash function to the current account ID number to generate a corresponding 2048-bit hash output and, in step 410, the BDP engine 120 updates the current bloom filter by bitwise logically ORing that 2048-bit hash output with the 2048-bit value of the current bloom filter to generate an updated 2048-bit value for the current bloom filter. Note that, if there are multiple transactions in the BOI 1 14 for the same account, the corresponding account ID number will simply be repeatedly hashed to the same 2048-bit hash output, which will result in no change to the value of the current bloom filter.
  • the BDP engine 120 compares the fullness of the updated current bloom filter to the specified target fullness level to determine if the current bloom filter is completed.
  • One measure of the fullness of a bloom filter is calculated by summing across the bits of the bloom filter. This sum indicates the number of bits set to 1 in the bloom filter.
  • a bloom filter is said to be completed when at least 200 of the bloom filter's 2048 bits are set to 1 .
  • Other implementations may use higher or lower target fullness levels.
  • a specific target fullness level represents a trade-off between bloom filter utilization, false positive rate, and resource (i.e., disc space) utilization. Higher target fullness levels represent greater bloom filter utilization at the cost of higher false positive rates but lower disc space usage.
  • step 412 determines, in step 412, that the fullness of the current bloom filter is less than the target fullness level. If the BDP engine 120 determines that the current bloom filter is not yet completed and processing proceeds to step 416, where the BDP engine 120 determines whether all of the account ID numbers for the transactions in the current block 1 14 have been processed. If not, then processing returns to step 406, where the BDP engine 120 identifies the next account ID number in the block 1 14 for updating the current bloom filter in steps 408 and 410.
  • step 416 the BDP engine 120 instead determines, in step 416, that all of the account ID numbers have been processed. If, however, the BDP engine 120 instead determines, in step 416, that all of the account ID numbers have been processed, then, in step 418, the current bloom filter is stored in the accounts database 160 as an incomplete bloom filter to be retrieved and further updated when the BDP engine 120 processes the next block 1 14 in the blockchain 1 10.
  • step 412 If, in step 412, the BDP engine 120 determines that the fullness of the current bloom filter is greater than or equal to the target fullness level, then processing proceeds to step 414, where the BDP engine 120 stores the current bloom filter as a completed bloom filter in the accounts database 160 and initializes a new 2048-bit current bloom filter having all bits set to 0. coprocessing then proceeds to step 416 with the new current bloom filter. Note that, if the completion of the current bloom filter (as determined in step 412) coincides with the end of the current block 1 14 (as determined in step 416), then the incomplete current bloom filter stored in the accounts database 160 in step 418 will have all bits set to 0 as initialized in step 414.
  • the BDP engine 120 will simply retrieve that all-zero current bloom filter from the accounts database 160 and update it with new account
  • the BDP engine 120 may complete the current trace, the current transaction, or even the current block before determining that the current bloom filter is complete, even if that means slightly exceeding the target fullness level for the current bloom filter.
  • the BDP engine 120 processes each block 1 14 in the Ethereum blockchain 1 10 to generate the bloom filters of the accounts database 160.
  • the size of the represented portion of the blockchain 1 10 varies from bloom filter to bloom filter, each 2048-bit bloom filter along with its corresponding filter-stop location is significantly smaller than an explicit listing of the 20-byte account ID numbers for the accounts having data in the same portion of the blockchain 1 10.
  • the accounts database 160 will be orders of magnitude smaller than an explicit mapping index between accounts and blocks. This allows the BDP engine 120 to maintain its miniscule stance on consumer-grade hardware.
  • the bloom filters enable the BDP engine 120 to generate the transaction-location list for a typical new AOI 122 for the transaction-location database 150 orders of magnitude faster than having to process the entire Ethereum blockchain 1 10 to locate the transactions for that new AOI 122. This is especially important for the potentially very long list of traces which must be accessed in order to build an accurate list of transactions.
  • the BDP engine 120 converts some and possibly all of the blocks 1 14 in the blockchain 1 10 into corresponding binary, optimized versions 1 16 for storage in the blocks database 170. Because the stored data is in a binary format (as opposed to the JavaScript Object Notation (JSON) format of the retrieved blockchain data), the BDP engine 120 can retrieve data from the blocks database 170 significantly faster than requesting the same data from the blockchain 1 10. Moreover, the optimized, binary versions 1 16 are significantly smaller than the corresponding blockchain blocks 1 14.
  • the BDP engine 120 To convert a blockchain block 1 14 for storage in the blocks database 170, the BDP engine 120 removes unnecessary and/or uninteresting data such as the block's digital signature, its state, receipt, and transaction roots and other hashes, and the node-generated bloom filters (particularly those from the transaction receipts). (Note that these node-generated bloom filters are different from the bloom filters stored in the accounts database 160.) Note that the information in the node-generated bloom filters (and then some) is contained in the adaptive bloom filters stored in the accounts database 160.
  • the node- generated bloom data is typically of no use to the accounting functions of the BDP engine 120, although the BDP engine 120 could be configured to retain that data for a particular use. In fact, retention of any of the above-mentioned discarded block data can be enabled optionally for particular uses. This ability to optionally store any part of the block data in the blocks database 170 is an additional feature of the BDP engine 120.
  • the BDP engine 120 pre-calculates useful data that may be needed in subsequent analysis, such as the size of the block file to be stored in the blocks database 170, the size and number of the enhanced, adaptive bloom filters in the accounts database 160 corresponding to the block, the number of traces encountered per transaction, etc. Because each block has a certain price in fiat currency at the time of its creation, the BDP engine 120 writes price information into the blocks database 170 as well. This removes the need to retrieve that information later.
  • the BDP engine 120 After storing the optimized, binary version 1 16 in the blocks database 170, the BDP engine 120 deletes the JSON data of the retrieved blockchain block 1 14.
  • the BDP engine 120 maintains (i) the transaction-location database 150 to store the location in the blockchain 1 10 of each transaction for each specified AOI 122 as well as (ii) the blocks database 170 to store optimized, binary versions 1 16 of (at least) those blockchain blocks 1 14 containing those transactions.
  • the BDP engine 120 In order to support a newly specified AOI 122, the BDP engine 120 also maintains the accounts database 160 to store bloom filters that identify blockchain blocks 1 14 might contain data for each blockchain account, where BDP engine 120 uses the accounts database 160 to (i) generate a new transaction-location list to the transaction-location database 150 for the new AOI 122 and (ii) possibly add new optimized, binary blocks 1 16 to the blocks database 170.
  • the BDP engine 120 can be configured to store, in the blocks database 170, an optimized, binary version 1 16 of each block 1 14 in the blockchain 1 10. In that case, the BDP engine 120 can be further configured to support data analysis at the entire blockchain level that can be faster than would be available by having to directly access the blockchain 1 10 itself.
  • this blockchain-level data analysis can take into account blocks, transactions, receipts, logs, and/or traces. Such blockchain-level data analysis can extend to portions of the blockchain data larger than single contracts such as industry-wide
  • each bloom filter in the accounts database 160 represents a different portion of the blockchain 1 10, with each portion having a filter-start location and a filter-stop location. Since the completed bloom filters all have approximately the same fullness level, the length of the portion of the blockchain 1 10 corresponding to a particular bloom filter gives an indication of the density of the number of different accounts having data in that particular portion of the blockchain 1 10. This density information is an example of blockchain- level data that is available to the BDP engine 120.
  • blocks may be reverted in a process known as forking. Forking happens continually in a blockchain and results in the possible correction or reorganization of certain recent blocks. After a specified forking period (for example, six to eight minutes for the Ethereum blockchain 1 10), it is safe to assume that any block that is older than the forking period will never revert.
  • forking happens continually in a blockchain and results in the possible correction or reorganization of certain recent blocks. After a specified forking period (for example, six to eight minutes for the Ethereum blockchain 1 10), it is safe to assume that any block that is older than the forking period will never revert.
  • the blockchain data-processing engine 120 of FIG. 1 adaptively generates and stores bloom filters in the accounts database 160, where each bloom filter corresponds to a different portion of the Ethereum blockchain 1 10 and can be used to determine whether that portion of the blockchain 1 10 might contain data for any specified account of interest 122.
  • the BDP engine 120 can also store optimized versions of blockchain blocks in the blocks database 170.
  • the BDP engine 120 uses the bloom filters in the accounts database 160 and possibly blocks stored in the blocks database 170 to help generate a list of transaction locations to be stored in the transaction-location database 150 for new accounts of interest 122 to be supported by the BDP engine 120.
  • the BDP engine 120 uses the transaction-location lists in the transaction-location database 150 to generate reports 128 for any of the AOIs 122 supported by the BDP engine 120 and/or to perform other meaningful tasks.
  • the BDP engine 120 updates (i) the accounts database 160 for any accounts identified in the new block 1 12, (ii) the transaction-location database 150 for its supported AOIs, and (iii) possibly the blocks database 170.
  • the BDP engine 120 uses the accounts having data in the new block 1 12 to update the incomplete, current bloom filter stored in the accounts database 160 using the processing 400 of FIG. 4.
  • the BDP engine 120 uses the transactions in the new block 1 12 for AOIs 122 being monitored by the BDP engine 120 to update the transaction- location lists stored in the transaction-location database 150 for those AOIs.
  • FIG. 1 shows a blockchain data-processing system 100 with one BDP engine 120 processing data from one copy of the Ethereum blockchain 1 10.
  • the BDP system 100 may have multiple (co-located and/or distributed) instances of the BDP engine 120 processing data from the same copy of the Ethereum blockchain 1 10 or from multiple, independent copies of the Ethereum blockchain 1 10, where each BDP engine 120 monitors a (potentially) different set of one or more AOIs 122.
  • the BDP system 100 could be part of a BDP network having multiple (co-located and/or distributed) instances of the BDP system 100 of FIG. 1 , each BDP system having one or more instances of the BDP engine 120 processing data from one or more different, identical copies of the Ethereum blockchain 1 10.
  • the different copies of the accounts database 160 for the different instances of the BDP engine 120 in such a blockchain-processing network could all be identical.
  • the multiple, identical instances of the accounts database 160 in that blockchain-processing network could be subject to consensus rules that are analogous to the consensus rules for the different instances of the Ethereum blockchain 1 10 itself throughout the Ethereum network.
  • the accounts database 160 may be encrypted and distributed via a decentralized file system such as the interplanetary file system or distributed via a smart contract in the blockchain 1 10.
  • the BDP engine 120 checks for the existence of a smart contract containing a relatively up-to-date accounts database 160 and, if none is found, the BDP engine 120 can insert the accounts database 160 into the blockchain 1 10 itself.
  • the code for the BDP engine 120 can also be embedded in the blockchain 1 10 and distributed and updated to subscribers via the blockchain itself, with subscription fees being transacted and documented in the blockchain.
  • bloom filters having a hash function that generates a 2048-bit hash output having one, two, or three bits set to 1
  • suitable bloom filters can be used having different hash functions, different size hash outputs, and/or a maximum number of bits set to 1 being greater or smaller than three.
  • suitable space-efficient probabilistic data structures other than bloom filters can also be used, as long as they do not produce false negative results.
  • the invention is a blockchain data-processing (BDP) system for processing a blockchain having blockchain blocks.
  • the system comprising a BDP engine configured to process the blockchain blocks and an accounts database distinct from the blockchain and configured to cover all accounts having data in the blockchain.
  • the BDP engine receives a blockchain block, the BDP engine identifies each account having data in the blockchain block and updates the accounts database for each identified account.
  • the BDP engine is configured to access the accounts database to identify portions of the blockchain having data for any specified account.
  • the blockchain is stored in a blockchain node of a blockchain network comprising a plurality of blockchain nodes storing identical copies of the blockchain.
  • the BDP system is one of a plurality of instances of the BDP system, each instance configured to process blockchain blocks in a corresponding copy of the blockchain stored in a corresponding blockchain node of the blockchain network.
  • Each instance of the BDP system comprises a corresponding instance of the BDP engine that generates and maintains a corresponding instance of the accounts database.
  • the plurality of instances of the accounts database are identical.
  • the BDP system further comprises a transaction-location database configured to be used by the BDP engine to identify locations of transactions in the blockchain for one or more specified accounts of interest (AOIs).
  • the BDP engine is configured to access the accounts database to identify the portions of the blockchain having data for a specified AOI; analyze the identified portions of the blockchain to identify locations of transactions involving the specified AOI; and store a list of the identified transaction locations for the specified AOI in the transaction-location database.
  • the accounts database comprises a plurality of bloom filters, each bloom filter covering accounts having data in a corresponding portion of the blockchain.
  • the BDP engine is configured to access any bloom filter in the accounts database to determine whether the corresponding portion of the blockchain has data for a specified account.
  • the BDP engine is configured to process a blockchain block to update one or more bloom filters in the accounts database.
  • the BDP engine is configured to receive a blockchain block and identify each account having data in the blockchain block. For each identified account, the BDP engine is configured to update a current bloom filter for the identified account; determine whether the current bloom filter is to be completed; and start a new bloom filter after the current bloom filter has been completed.
  • the BDP engine is configured to determine that the current bloom filter is to be completed when the BDP engine determines that the current bloom filter has reached a target fullness level that represents a threshold number of bits in the current bloom filter that are set.
  • the BDP engine is configured to complete processing of a current transaction or trace in the blockchain block before completing the current bloom filter.
  • all completed bloom filters in the accounts database have approximately equal fullness levels.
  • completed bloom filters in the accounts database are not required to start at the beginning of a blockchain block and are not required to stop at the end of a blockchain block.
  • the blockchain is an Ethereum-based blockchain.
  • the invention is a BDP system for processing a blockchain having blockchain blocks.
  • the system comprises a BDP engine configured to process the blockchain blocks and a transaction-location database distinct from the blockchain and configured to identify locations of transactions in the blockchain for one or more accounts of interest (AOIs).
  • AOIs accounts of interest
  • the BDP engine identifies portions of the blockchain having data for the new AOI; analyzes the identified portions of the blockchain to identify locations of transactions involving the new AOI; and stores a list of the identified transaction locations for the new AOI in the transaction-location database.
  • the BDP engine is configured to access the transaction-location database to identify transaction locations in the blockchain for any of the one or more AOIs.
  • the blockchain is stored in a blockchain node of a blockchain network comprising a plurality of blockchain nodes storing identical copies of the blockchain.
  • the BDP system is one of a plurality of instances of the BDP system, each instance configured to process blockchain blocks in a corresponding copy of the blockchain stored in a corresponding blockchain node of the blockchain network.
  • Each instance of the BDP system comprises a corresponding instance of the BDP engine that generates and maintains a corresponding instance of the transaction-location database.
  • the plurality of instances of the transaction- location database are identical.
  • the BDP system further comprises a blocks database configured to store a binary block for each of one or more blockchain blocks.
  • the BDP engine is configured to access the transaction-location database to identify transaction locations in the blockchain for a specified AOI. For each identified transaction location, the BDP engine is configured to access the blocks database to retrieve data for the specified AOI if the transaction location corresponds to one of the binary blocks in the blocks database; and access the blockchain to retrieve data for the specified AOI if the transaction location does not correspond to one of the binary blocks in the blocks database.
  • transaction-location database is identified by (i) a first value identifying a corresponding blockchain block and (ii) a second value identifying a corresponding location within the corresponding blockchain block.
  • At least one transaction location in the transaction-location database is further identified by a third value identifying an index into a corresponding trace.
  • the blockchain is an Ethereum-based blockchain.
  • the invention is a BDP system for processing a blockchain having blockchain blocks.
  • the system comprises a BDP engine configured to process the blockchain blocks and a blocks database distinct from the blockchain and configured to contain one or more binary blocks corresponding to one or more blockchain blocks.
  • the BDP engine is configured to convert the one or more blockchain blocks into the one or more binary blocks for storage in the blocks database.
  • the BDP engine is configured to access the blocks database to retrieve data stored in any of the binary blocks.
  • the blockchain is stored in a blockchain node of a blockchain network comprising a plurality of blockchain nodes storing identical copies of the blockchain.
  • the BDP system is one of a plurality of instances of the BDP system, each instance configured to process blockchain blocks in a corresponding copy of the blockchain stored in a corresponding blockchain node of the blockchain network.
  • Each instance of the BDP system comprises a corresponding instance of the BDP engine that generates and maintains a corresponding instance of the blocks database.
  • the plurality of instances of the blocks database are identical.
  • the BDP engine is configured to convert each blockchain block into a corresponding binary block for storage in the blocks database.
  • the BDP system further comprises a transaction-location database configured to store locations of transactions in the blockchain for one or more accounts of interest (AOIs).
  • the BDP engine is configured to convert a blockchain block into a corresponding binary block for storage in the blocks database only if the blockchain block has data for at least one AOI.
  • the blockchain is an Ethereum-based blockchain.
  • Embodiments of the invention may be implemented as (analog, digital, or a hybrid of both analog and digital) circuit-based processes, including possible implementation as a single integrated circuit (such as an ASIC or an FPGA), a multi-chip module, a single card, or a multi- card circuit pack.
  • various functions of circuit elements may also be implemented as processing blocks in a software program.
  • Such software may be employed in, for example, a digital signal processor, micro-controller, general-purpose computer, or other processor.
  • Functional modules or units may be composed of circuitry, where such circuitry may be fixed function, configurable under program control or under other configuration information, or some combination thereof. Functional modules themselves thus may be described by the functions that they perform, to helpfully abstract how some of the constituent portions of such functions may be implemented. In some situations, circuitry, units, and/or functional modules may be described partially in functional terms, and partially in structural terms. In some situations, the structural portion of such a description may be described in terms of a configuration applied to circuitry or to functional modules, or both.
  • Embodiments according to the disclosure include non-transitory machine-readable media that store configuration data or instructions for causing a machine to execute, or for configuring a machine to execute, or for describing circuitry or machine structures (e.g., layout) that can execute or otherwise perform, a set of actions or accomplish a stated function, according to the disclosure.
  • Such data can be according to hardware description languages, such as HDL or VHDL, in Register Transfer Language (RTL), or layout formats, such as GDSII, for example.
  • the present invention may be embodied as an apparatus (including, for example, a system, a machine, a device, a computer program product, and/or the like), as a method (including, for example, a business process, a computer-implemented process, and/or the like), or as any combination of the foregoing. Accordingly, embodiments of the present invention may take the form of an entirely software embodiment (including firmware, resident software, micro-code, and the like), an entirely hardware embodiment, or an embodiment combining software and hardware aspects that may generally be referred to herein as a "system.”
  • Embodiments of the invention can be manifest in the form of methods and apparatuses for practicing those methods.
  • Embodiments of the invention can also be manifest in the form of program code embodied in tangible media, such as magnetic recording media, optical recording media, solid state memory, floppy diskettes, CD-ROMs, hard drives, or any other non-transitory machine-readable storage medium, wherein, when the program code is loaded into and executed by a machine, such as a computer, the machine becomes an apparatus for practicing the invention.
  • Embodiments of the invention can also be manifest in the form of program code, for example, stored in a non-transitory machine-readable storage medium including being loaded into and/or executed by a machine, wherein, when the program code is loaded into and executed by a machine, such as a computer, the machine becomes an apparatus for practicing the invention.
  • program code segments When implemented on a general-purpose processor, the program code segments combine with the processor to provide a unique device that operates analogously to specific logic circuits.
  • the storage medium may be (without limitation) an electronic, magnetic, optical, electromagnetic, infrared, or semiconductor system, apparatus, or device.
  • the storage medium may be (without limitation) an electronic, magnetic, optical, electromagnetic, infrared, or semiconductor system, apparatus, or device.
  • a more-specific, non-exhaustive list of possible storage media include a magnetic tape, a portable computer diskette, a hard disk, a random access memory (RAM), a read-only memory (ROM), an erasable programmable read-only memory (EPROM) or Flash memory, a portable compact disc read-only memory (CD-ROM), an optical storage device, and a magnetic storage device.
  • the storage medium could even be paper or another suitable medium upon which the program is printed, since the program can be electronically captured via, for instance, optical scanning of the printing, then compiled, interpreted, or otherwise processed in a suitable manner including but not limited to optical character recognition, if necessary, and then stored in a processor or computer memory.
  • a suitable storage medium may be any medium that can contain or store a program for use by or in connection with an instruction execution system, apparatus, or device.
  • engines may be provided through the use of dedicated hardware as well as hardware capable of executing software in association with appropriate software.
  • the functions may be provided by a single dedicated processor, by a single shared processor, or by a plurality of individual processors, some of which may be shared.
  • explicit use of the term "engine” should not be construed to refer exclusively to hardware capable of executing software, and may implicitly include, without limitation, digital signal processor (DSP) hardware, network processor, application specific integrated circuit (ASIC), field programmable gate array (FPGA), read only memory (ROM) for storing software, random access memory (RAM), and non-volatile storage.
  • DSP digital signal processor
  • ASIC application specific integrated circuit
  • FPGA field programmable gate array
  • ROM read only memory
  • RAM random access memory
  • non-volatile storage non-volatile storage.
  • any switches shown in the figures are conceptual only. Their function may be carried out through the operation of program logic, through dedicated logic, through the interaction of program control and dedicated logic, or even manually, the particular technique being selectable by the implementer as more specifically understood from the context.
  • each may be used to refer to one or more specified characteristics of a plurality of previously recited elements or steps.
  • the open-ended term “comprising” the recitation of the term “each” does not exclude additional, unrecited elements or steps.
  • an apparatus may have additional, unrecited elements and a method may have additional, unrecited steps, where the additional, unrecited elements or steps do not have the one or more specified characteristics.

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Abstract

L'invention concerne, selon certains modes de réalisation, pour une chaîne de blocs telle que la chaîne de blocs Ethereum, un moteur de traitement de données qui maintient une base de données de comptes ayant des filtres de Bloom qui identifient des comptes qui pourraient avoir des données dans différentes parties de la chaîne de blocs, une base de données de blocs qui stocke des versions optimisées d'un ou de plusieurs (et éventuellement de tous) les blocs dans la chaîne de blocs, et une base de données d'emplacement de transaction qui stocke une liste d'emplacements de transaction pour un ou chaque compte parmi plusieurs comptes d'intérêt (AOI) pris en charge par le moteur. Le moteur utilise les bases de données de comptes et de blocs pour effectuer rapidement des analyses à l'échelle du réseau. Le moteur utilise les bases de données d'emplacements de transaction et de blocs pour générer des rapports pour les AOI rapidement. Le moteur utilise les bases de données de comptes et de blocs pour générer, pour la base de données d'emplacements de transaction, une nouvelle liste d'emplacements de transaction pour un nouvel AOI rapidement et sans nécessiter beaucoup de mémoire.
PCT/US2018/015145 2017-01-31 2018-01-25 Moteur de traitement de données de chaîne de blocs WO2018144302A1 (fr)

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